Litcius/Paper detail

The Importance of Understanding Deep Learning

Tim Räz, Claus Beisbart

2022Erkenntnis43 citationsDOIOpen Access PDF

Abstract

Abstract Some machine learning models, in particular deep neural networks (DNNs), are not very well understood; nevertheless, they are frequently used in science. Does this lack of understanding pose a problem for using DNNs to understand empirical phenomena? Emily Sullivan has recently argued that understanding with DNNs is not limited by our lack of understanding of DNNs themselves. In the present paper, we will argue, contra Sullivan, that our current lack of understanding of DNNs does limit our ability to understand with DNNs. Sullivan’s claim hinges on which notion of understanding is at play. If we employ a weak notion of understanding, then her claim is tenable, but rather weak. If, however, we employ a strong notion of understanding, particularly explanatory understanding, then her claim is not tenable.

Topics & Concepts

EpistemologyOntologyLimit (mathematics)Deep neural networksCognitive scienceComputer sciencePhilosophyPsychologyDeep learningArtificial intelligenceMathematical analysisMathematicsExplainable Artificial Intelligence (XAI)Philosophy and History of ScienceAdversarial Robustness in Machine Learning